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rgbif

rgbif gives you access to data from GBIF via their REST API. GBIF versions their API - we are currently using v1 of their API. You can no longer use their old API in this package - see ?rgbif-defunct.

Tutorials:

Package API

The rgbif package API follows the GBIF API, which has the following sections:

contributing organizations, installations, networks, and nodes * rgbif functions: dataset_metrics(), dataset_search(), dataset_suggest(), datasets(), enumeration(), enumeration_country(), installations(), networks(), nodes(), organizations() * Registry also includes the GBIF OAI-PMH service, which includes GBIF registry data only. rgbif functions: gbif_oai_get_records(), gbif_oai_identify(), gbif_oai_list_identifiers(), gbif_oai_list_metadataformats(), gbif_oai_list_records(), gbif_oai_list_sets()

the search and download APIs * rgbif functions: occ_count(), occ_data(), occ_download(), occ_download_cancel(), occ_download_cancel_staged(), occ_download_get(), occ_download_import(), occ_download_list(), occ_download_meta(), occ_get(), occ_issues(), occ_issues_lookup(), occ_metadata(), occ_search()

The GBIF maps API (http://www.gbif.org/developer/maps) is not implemented in rgbif, and are meant more for intergration with web based maps.

Installation

install.packages("rgbif")

Alternatively, install development version

install.packages("devtools")
devtools::install_github("ropensci/rgbif")
library("rgbif")

Note: Windows users have to first install Rtools to use devtools

Search for occurrence data

occ_search(scientificName = "Ursus americanus", limit = 50)
#> Records found [8196] 
#> Records returned [50] 
#> No. unique hierarchies [1] 
#> No. media records [44] 
#> No. facets [0] 
#> Args [scientificName=Ursus americanus, limit=50, offset=0, fields=all] 
#> # A tibble: 50 × 68
#>                name        key decimalLatitude decimalLongitude
#>               <chr>      <int>           <dbl>            <dbl>
#> 1  Ursus americanus 1249277297        35.76789        -75.80894
#> 2  Ursus americanus 1229610216        44.06086        -71.92712
#> 3  Ursus americanus 1253300445        44.65481        -72.67270
#> 4  Ursus americanus 1229610234        44.06062        -71.92692
#> 5  Ursus americanus 1253314877        49.25782       -122.82786
#> 6  Ursus americanus 1272078411        44.41793        -72.70709
#> 7  Ursus americanus 1249296297        39.08590       -105.24586
#> 8  Ursus americanus 1249284297        43.68723        -72.32891
#> 9  Ursus americanus 1257415362        44.32746        -72.41007
#> 10 Ursus americanus 1253317181        43.64214        -72.52494
#> # ... with 40 more rows, and 64 more variables: issues <chr>,
#> #   datasetKey <chr>, publishingOrgKey <chr>, publishingCountry <chr>,
#> #   protocol <chr>, lastCrawled <chr>, lastParsed <chr>, crawlId <int>,
#> #   extensions <chr>, basisOfRecord <chr>, taxonKey <int>,
#> #   kingdomKey <int>, phylumKey <int>, classKey <int>, orderKey <int>,
#> #   familyKey <int>, genusKey <int>, speciesKey <int>,
#> #   scientificName <chr>, kingdom <chr>, phylum <chr>, order <chr>,
#> #   family <chr>, genus <chr>, species <chr>, genericName <chr>,
#> #   specificEpithet <chr>, infraspecificEpithet <chr>, taxonRank <chr>,
#> #   dateIdentified <chr>, year <int>, month <int>, day <int>,
#> #   eventDate <chr>, modified <chr>, lastInterpreted <chr>,
#> #   references <chr>, license <chr>, identifiers <chr>, facts <chr>,
#> #   relations <chr>, geodeticDatum <chr>, class <chr>, countryCode <chr>,
#> #   country <chr>, rightsHolder <chr>, identifier <chr>,
#> #   verbatimEventDate <chr>, datasetName <chr>, collectionCode <chr>,
#> #   verbatimLocality <chr>, gbifID <chr>, occurrenceID <chr>,
#> #   taxonID <chr>, catalogNumber <chr>, recordedBy <chr>,
#> #   http...unknown.org.occurrenceDetails <chr>, institutionCode <chr>,
#> #   rights <chr>, identificationID <chr>, eventTime <chr>,
#> #   occurrenceRemarks <chr>, coordinateUncertaintyInMeters <dbl>,
#> #   informationWithheld <chr>

Or you can get the taxon key first with name_backbone(). Here, we select to only return the occurrence data.

key <- name_backbone(name='Helianthus annuus', kingdom='plants')$speciesKey
occ_search(taxonKey=key, limit=20)
#> Records found [20539] 
#> Records returned [20] 
#> No. unique hierarchies [1] 
#> No. media records [16] 
#> No. facets [0] 
#> Args [taxonKey=3119195, limit=20, offset=0, fields=all] 
#> # A tibble: 20 × 67
#>                 name        key decimalLatitude decimalLongitude
#>                <chr>      <int>           <dbl>            <dbl>
#> 1  Helianthus annuus 1249279611        34.04810       -117.79884
#> 2  Helianthus annuus 1315048347        34.04377       -116.94136
#> 3  Helianthus annuus 1253308332        29.67463        -95.44804
#> 4  Helianthus annuus 1249286909        32.58747        -97.10081
#> 5  Helianthus annuus 1305118889        18.40386        -66.04487
#> 6  Helianthus annuus 1262375813        29.82586        -95.45604
#> 7  Helianthus annuus 1262379231        34.04911       -117.80066
#> 8  Helianthus annuus 1262385911        32.78328        -96.70352
#> 9  Helianthus annuus 1265544678        32.58747        -97.10081
#> 10 Helianthus annuus 1270045172        33.92958       -117.37322
#> 11 Helianthus annuus 1265895094        42.87784       -112.43226
#> 12 Helianthus annuus 1265553900        34.12932       -118.20648
#> 13 Helianthus annuus 1269543851        29.50991        -94.50006
#> 14 Helianthus annuus 1265899487        19.45194        -96.95945
#> 15 Helianthus annuus 1265562148        29.47895        -98.51160
#> 16 Helianthus annuus 1305119137        11.86735        -83.93555
#> 17 Helianthus annuus 1265590989        34.19005       -117.31644
#> 18 Helianthus annuus 1265590198        25.76265       -100.25513
#> 19 Helianthus annuus 1305119139        11.86735        -83.93555
#> 20 Helianthus annuus 1315048128        34.03212       -117.47091
#> # ... with 63 more variables: issues <chr>, datasetKey <chr>,
#> #   publishingOrgKey <chr>, publishingCountry <chr>, protocol <chr>,
#> #   lastCrawled <chr>, lastParsed <chr>, crawlId <int>, extensions <chr>,
#> #   basisOfRecord <chr>, taxonKey <int>, kingdomKey <int>,
#> #   phylumKey <int>, classKey <int>, orderKey <int>, familyKey <int>,
#> #   genusKey <int>, speciesKey <int>, scientificName <chr>, kingdom <chr>,
#> #   phylum <chr>, order <chr>, family <chr>, genus <chr>, species <chr>,
#> #   genericName <chr>, specificEpithet <chr>, taxonRank <chr>,
#> #   dateIdentified <chr>, year <int>, month <int>, day <int>,
#> #   eventDate <chr>, modified <chr>, lastInterpreted <chr>,
#> #   references <chr>, license <chr>, identifiers <chr>, facts <chr>,
#> #   relations <chr>, geodeticDatum <chr>, class <chr>, countryCode <chr>,
#> #   country <chr>, rightsHolder <chr>, identifier <chr>,
#> #   verbatimEventDate <chr>, datasetName <chr>, collectionCode <chr>,
#> #   verbatimLocality <chr>, gbifID <chr>, occurrenceID <chr>,
#> #   taxonID <chr>, catalogNumber <chr>, recordedBy <chr>,
#> #   http...unknown.org.occurrenceDetails <chr>, institutionCode <chr>,
#> #   rights <chr>, eventTime <chr>, identificationID <chr>,
#> #   coordinateUncertaintyInMeters <dbl>, occurrenceRemarks <chr>,
#> #   informationWithheld <chr>

Search for many species

Get the keys first with name_backbone(), then pass to occ_search()

splist <- c('Accipiter erythronemius', 'Junco hyemalis', 'Aix sponsa')
keys <- sapply(splist, function(x) name_backbone(name=x)$speciesKey, USE.NAMES=FALSE)
occ_search(taxonKey=keys, limit=5, hasCoordinate=TRUE)
#> Occ. found [2480598 (22), 2492010 (2453480), 2498387 (772689)] 
#> Occ. returned [2480598 (5), 2492010 (5), 2498387 (5)] 
#> No. unique hierarchies [2480598 (1), 2492010 (1), 2498387 (1)] 
#> No. media records [2480598 (1), 2492010 (4), 2498387 (5)] 
#> No. facets [] 
#> Args [taxonKey=2480598,2492010,2498387, hasCoordinate=TRUE, limit=5,
#>      offset=0, fields=all] 
#> First 10 rows of data from 2480598
#> 
#> # A tibble: 5 × 82
#>                      name        key decimalLatitude decimalLongitude
#>                     <chr>      <int>           <dbl>            <dbl>
#> 1 Accipiter erythronemius  920169861       -20.55244        -56.64104
#> 2 Accipiter erythronemius  920184036       -20.76029        -56.71314
#> 3 Accipiter erythronemius 1001096527       -27.58000        -58.66000
#> 4 Accipiter erythronemius 1001096518       -27.92000        -59.14000
#> 5 Accipiter erythronemius  686297260         5.26667        -60.73333
#> # ... with 78 more variables: issues <chr>, datasetKey <chr>,
#> #   publishingOrgKey <chr>, publishingCountry <chr>, protocol <chr>,
#> #   lastCrawled <chr>, lastParsed <chr>, crawlId <int>, extensions <chr>,
#> #   basisOfRecord <chr>, taxonKey <int>, kingdomKey <int>,
#> #   phylumKey <int>, classKey <int>, orderKey <int>, familyKey <int>,
#> #   genusKey <int>, speciesKey <int>, scientificName <chr>, kingdom <chr>,
#> #   phylum <chr>, order <chr>, family <chr>, genus <chr>, species <chr>,
#> #   genericName <chr>, specificEpithet <chr>, taxonRank <chr>,
#> #   coordinateUncertaintyInMeters <dbl>, year <int>, month <int>,
#> #   day <int>, eventDate <chr>, lastInterpreted <chr>, license <chr>,
#> #   identifiers <chr>, facts <chr>, relations <chr>, geodeticDatum <chr>,
#> #   class <chr>, countryCode <chr>, country <chr>, recordedBy <chr>,
#> #   catalogNumber <chr>, institutionCode <chr>, locality <chr>,
#> #   collectionCode <chr>, gbifID <chr>, modified <chr>, identifier <chr>,
#> #   created <chr>, occurrenceID <chr>, associatedSequences <chr>,
#> #   higherClassification <chr>, taxonID <chr>, sex <chr>,
#> #   establishmentMeans <chr>, continent <chr>, references <chr>,
#> #   institutionID <chr>, dynamicProperties <chr>, fieldNumber <chr>,
#> #   language <chr>, type <chr>, preparations <chr>,
#> #   occurrenceStatus <chr>, rights <chr>, higherGeography <chr>,
#> #   nomenclaturalCode <chr>, verbatimEventDate <chr>, endDayOfYear <chr>,
#> #   georeferenceVerificationStatus <chr>, datasetName <chr>,
#> #   verbatimLocality <chr>, otherCatalogNumbers <chr>,
#> #   startDayOfYear <chr>, accessRights <chr>, collectionID <chr>

Maps

Make a simple map of species occurrences.

splist <- c('Cyanocitta stelleri', 'Junco hyemalis', 'Aix sponsa')
keys <- sapply(splist, function(x) name_backbone(name=x)$speciesKey, USE.NAMES=FALSE)
dat <- occ_search(taxonKey=keys, limit=100, return='data', hasCoordinate=TRUE)
library('plyr')
datdf <- ldply(dat)
gbifmap(datdf)

Meta

  • Please report any issues or bugs.
  • License: MIT
  • Get citation information for rgbif in R doing citation(package = 'rgbif')
  • Please note that this project is released with a Contributor Code of Conduct. By participating in this project you agree to abide by its terms.

This package is part of a richer suite called SPOCC Species Occurrence Data, along with several other packages, that provide access to occurrence records from multiple databases.


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Version

Install

install.packages('rgbif')

Monthly Downloads

7,612

Version

0.9.5

License

MIT + file LICENSE

Issues

Pull Requests

Stars

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Maintainer

Scott Chamberlain

Last Published

October 6th, 2016

Functions in rgbif (0.9.5)

check_wkt

Check input WKT
blanktheme

Custom ggplot2 theme
density_spplist

The density web service provides access to records showing the density of occurrence records from the GBIF Network by one-degree cell.
densitylist

The density web service provides access to records showing the density of occurrence records from the GBIF Network by one-degree cell.
count_facet

Facetted count occurrence search.
dataset_suggest

Suggest datasets in GBIF.
create_gist

Function that takes a list of files and creates payload for API
dataset_search

Search datasets in GBIF.
datasets

Search for datasets and dataset metadata.
dataset_metrics

Get details on a GBIF dataset.
gbif_issues

Table of GBIF issues, with codes used in data output, full issue name, and descriptions.
downloads

Downloads interface
gbifdata

Get data.frame from occurrencelist, occurrencelist_many, or densitylist.
gbif_bbox2wkt

Convert a bounding box to a Well Known Text polygon, and a WKT to a bounding box
gbif_photos

View photos from GBIF.
gbif_oai

GBIF registry data via OAI-PMH
elevation

Get elevation for lat/long points from a data.frame or list of points.
gbif_citation

Get citation for datasets used
gbif_names

View highlighted terms in name results from GBIF.
enumeration

Enumerations.
isocodes

Table of country two character ISO codes, and GBIF names
gbifmap_dens

Make a simple map to visualize GBIF data density data
installations

Installations metadata.
gbifmap

Make a map to visualize GBIF occurrence data.
name_backbone

Lookup names in the GBIF backbone taxonomy.
name_suggest

A quick and simple autocomplete service that returns up to 20 name usages by doing prefix matching against the scientific name. Results are ordered by relevance.
name_lookup

Lookup names in all taxonomies in GBIF.
gist

Post a file as a Github gist
gbifmap_list

Make a simple map to visualize GBIF point data.
get_credentials

Get Github credentials from use in console
occ_download_import

Import a downloaded file from GBIF.
name_usage

Lookup details for specific names in all taxonomies in GBIF.
occ_download_get

Get a download from GBIF.
occ_download_list

Lists the downloads created by a user.
networks

Networks metadata.
nodes

Nodes metadata.
occ_get

Get data for specific GBIF occurrences.
occ_download_cancel

Cancel a download cretion process.
occ_download_meta

Retrieves the occurrence download metadata by its unique key.
occ_count

Get number of occurrence records.
occ_data

Search for GBIF occurrences - simplified for speed
occ_spellcheck

Spell check search term for occurrence searches
occ_download

Spin up a download request for GBIF occurrence data.
occ_facet

Facet GBIF occurrences
occ_issues_lookup

Lookup occurrence issue definitions and short codes
occ_issues

Parse and examine further GBIF issues on a dataset.
occurrencecount

Counts taxon concept records matching a range of filters.
occ_metadata

Search for catalog numbers, collection codes, collector names, and institution codes.
occ_search

Search for GBIF occurrences
occ_fields

Vector of fields in the output for the function occ_search
occurrencelist_all

Occurrencelist_all carries out an occurrencelist query for a single name and all its name variants according to GBIF's name matching.
occurrencelist_many

occurrencelist_many is the same as occurrencelist, but takes in a vector of species names.
parsenames

Parse taxon names using the GBIF name parser.
%>%

Pipe operator
providers

Get data providers and their unique keys.
read_wkt

Check input WKT
occurrenceget

Get individual records for a given occurrence record.
occurrencelist

Occurrencelist searches for taxon concept records matching a range of filters.
occurrencedensity

Returns summary counts of occurrence records by one-degree cell for a single taxon, country, dataset, data publisher or data network.
organizations

Organizations metadata.
taxoncount

Search by taxon to retrieve number of records in GBIF.
taxonget

Get taxonomic information on a specific taxon or taxa in GBIF by their taxon concept keys.
resources

Get data resources and their unique keys.
rgb_country_codes

Look up 2 character ISO country codes
typestatus

Type status options for GBIF searching
wkt_parse

parse wkt into smaller bits
type_sum

Type summary
togeojson

Convert spatial data files to GeoJSON from various formats.
taxonsearch

Search for taxa in GBIF.
rgbif-defunct

Defunct functions in rgbif
taxrank

Get the possible values to be used for (taxonomic) rank arguments in GBIF API methods.
rgbif-package

Interface to the Global Biodiversity Information Facility API.
stylegeojson

Style a data.frame prior to converting to geojson.
suggestfields

Fields available in gbif_suggest function